Downstream Classification
Downstream classification focuses on leveraging pre-trained models or learned representations to improve the performance of classifiers on specific tasks. Current research emphasizes improving fairness and efficiency, including developing methods for pre-processing data to mitigate bias (e.g., using Wasserstein distance and normalizing flows) and efficiently selecting the best pre-trained language models for a given task (e.g., through transferability estimation). These advancements are significant because they address critical issues of bias and computational cost, ultimately leading to more accurate, fair, and efficient machine learning systems across diverse applications.
Papers
March 25, 2022
March 18, 2022